Applied Data Scientist

Convex
London
6 days ago
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Applied Data Scientist

Department: Data


Employment Type: Permanent - Full Time


Location: London, UK


Description

In Convex, we are shifting our focus from how we collect data to how we apply it. As a talented Applied Data Scientist, you will move beyond standard analysis to build intelligent solutions that directly empower our underwriting community and beyond to make cleaner underwriting decisions. This is a hands‑on, highly technical role that requires a "go-getter" mentality; someone who can identify a business problem, model the solution, and explain the "why" to non-technical stakeholders.


Convex is a data-driven insurance company adopting a culture of small, highly skilled teams building the core intellectual property while all operational needs are met with Software as a Service (SaaS) or outsourced providers. Our 3 strategic pillars are to be our customer’s favourite insurer, to achieve operational excellence and to make better decisions using data and technology. Central to this is the industry-leading usage of Generative AI, LLMs, and advanced data modelling.


We are looking for a tenacious, STEM-educated professional to join our team.


Key Responsibilities

Ensuring we deliver value from data to our business stakeholders, by:



  • Taking validated hypotheses that solve real world problems, turning these into production grade solutions.
  • Moving beyond reporting to build predictive models and tools that help Underwriters make better, faster decisions.
  • Working as a key member of a cross-functional squad, collaborating with engineers and business stakeholders to deliver end-to-end data products.
  • Identifying opportunities to transition from simple data collection to advanced data usage that supports the Underwriting community's objectives.
  • Acting as a technical leader by training team members on best practices in Python, modelling, and technical execution.
  • Working with stakeholders to define, document, prioritise business requirements.
  • Ensure business value of the requirements are understood by the squad.
  • Communicating with stakeholders on timelines, expected outcomes and providing transparency.

Skills Knowledge and Expertise

Technical proficiencies and abilities:



  • Deep proficiency in the Python Data Science ecosystem (e.g.,Pandas, Scikit-learn, PyTorch/TensorFlow).
  • Mastery of SQL is essential; experience with Snowflake is highly preferred.
  • Solid experience with AWS in deploying solutions, including Generative AI services (Bedrock / AgentCore etc).
  • Practical knowledge of Generative AI, including Large Language Models (LLMs) and agentic workflows.
  • Strong understanding of Data Modelling and how to structure data effectively for scalable science projects.
  • Must be able to work in a scaled agile environment involving cross functional execution teams.
  • Source repository control and devops methodologies eg: github actions workflows.

Soft Skills:



  • Ability to simplify and translate complex data findings to cater to various stakeholders
  • A desire to train and upskill others within the team.
  • A proactive mindset with the ability to work autonomously and propose new ideas to the business.
  • Must be able to communicate with stakeholders effectively and keep them updated on scope, timelines, and outcomes.

Preferred experience:



  • Direct experience working within the General Insurance or Specialty Insurance markets.
  • A deep understanding of the Underwriting lifecycle, including risk selection, pricing adequacy, and exposure management.
  • Strong STEM background with a highly numerate degree
  • Candidates with an Actuarial background (either qualified or making significant progress through exams) are highly encouraged to apply.
  • The ability to bridge the gap between traditional actuarial science and modern machine learning is a significant advantage.
  • Proven track record of building models that have been deployed into a live production environment (not just "sandbox" projects).
  • Experience handling messy, disparate insurance datasets and transforming them into structured, high-value inputs for predictive modelling.

Benefits

  • Competitive Salary
  • 30 days Annual Leave
  • Birthday Leave
  • 10% Employer Pension Contribution
  • Private Health Insurance Medical Cover
  • Group Income Protection
  • Life Assurance Cover
  • Enhanced Parental Leave
  • Annual Health Check
  • 3 days of Volunteer Leave each year
  • 10 days of help with care (elder/ childcare) through Bright Horizons
  • £1,300 to spend on learning & wellbeing
  • Give as You Earn
  • Cycle to Work
  • Season Ticket Loan


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